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基于深度学习的船舶工业网络入侵检测研究
引用本文:朱军,吴鹏.基于深度学习的船舶工业网络入侵检测研究[J].舰船科学技术,2020,42(5):181-183.
作者姓名:朱军  吴鹏
作者单位:连云港杰瑞深软科技有限公司,江苏连云港 222006;连云港杰瑞深软科技有限公司,江苏连云港 222006
摘    要:随着工业互联网的进一步推进,船舶工业网络系统面临着更大的挑战。为进一步提高船舶工业网络的安全和稳定,网络入侵检测至关重要。本文提出基于深度学习的船舶工业网络入侵检测方法,采用字典数的方法对多种数据流量收集创建,利用针对船舶网络改进的深度学习算法进行船舶网络数据流的特征分层提取,并采用瀑布型融合方法将不同层的特征向量进行特征融合。利用softmax进行分类,划分为3个危险等级,在低危、中危、高危3种情况,实现网络入侵检测。现场测试结果表明,基于深度学习的船舶工业网络入侵检测模型的准确率较高,大大提高了网络入侵检测效率,弥补了传统技术无法检测未知入侵的弱点。

关 键 词:船舶工业  字典树  深度学习  网络入侵

Research on network intrusion detection of shipbuilding industry based on deep learning
ZHU Jun,WU Peng.Research on network intrusion detection of shipbuilding industry based on deep learning[J].Ship Science and Technology,2020,42(5):181-183.
Authors:ZHU Jun  WU Peng
Institution:(Lianyungang Jerushen Soft Technology Co.,Ltd.,Lianyungang 222006,China)
Abstract:With the further development of industrial Internet,the network system of shipbuilding industry is facing greater challenges.In order to further improve the safety and stability of shipbuilding industry network,network intrusion detection is of great importance.In this paper,based on the deep study of the shipping industry network intrusion detection method,the number of dictionary method for a variety of data traffic collection is created,the depth of the learning algorithm was modified using in ship network layered extraction for shipping network data flow characteristics,and USES the waterfall fusion method to different layer of fusion,feature vector to use softmax classification,risk is divided into four levels:safety,low risk,moderate and high-risk four kinds of circumstances,the network intrusion detection.The field test results show that the deep learning based network intrusion detection model of shipbuilding industry has a higher accuracy,greatly improves the efficiency of network intrusion detection,and makes up for the weakness of traditional technology that cannot detect unknown intrusion.
Keywords:stern roller  ocean structure  finite element method  strength calculation
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